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A New Conceptual Automated Property Valuation Model for Residential Housing Market Võ Thành Nguyên College of Engineering and Science Victoria University, Melbourne, Australia Submitted in fulfillment of the requirements of the degree of Doctor of Philosophy August, 2014 Abstract Property market not only plays a major role in the Australian real estate economy but also holds a large portion of the country’s overall economic activities In the state of Victoria, Australia alone, residential property values surpassed one trillion dollars in 2012 A typical weekend property auctions in Victoria could see tens of millions of dollars change hands Residential property evaluation is important to banks or mortgage lenders, real-estates, policy-makers, home buyers and those involved in the housing industry A tool which can predict prices is essential to the housing market Residential properties in Victoria are re-valued manually every two years by the Department of Sustainability and Environment, Victoria, Australia (DSE) with up to ±30% uncertainty of the market values Municipal councils use the values established by DSE to determine property rates and land tax liabilities According to rpdata.com, there are currently five types of Automated Valuation Models (AVMs) used in residential property valuation in Australia: sales comparison approach, cost approach, hedonic, income capitalisation approach and price indexation The calculation backbone for these AVMs is still based on traditional statistics approach At the time of writing this thesis, only a handful of researchers in the world have used Artificial Neural Network (ANN) in AVM to estimate residential property prices In this research work, a Conceptual Automated Property Valuation Model (CAPVM) using ANNs was proposed to evaluate residential property price The ultimate goal was to produce long-term house price forecast for urban Victoria The CAPVM was first optimised and then its residential property price forecast capability was investigated i Abstract Optimisation of CAPVM was achieved by determining the best number of the hidden layers, the hidden neurons and the input variables, and finding the best value of training error threshold CAPVM was excellent in predicting 86.39% of residential property prices within the accuracy margin of ±10% error of the actual sale price, a better performance than DSE’s manual valuations and National Australia Bank’s published figures It successfully modelled the annual changes in residential property prices for hard to predict periods 2007-2008 during the global financial crisis and 2010-2012 residential property boom when the interest rates were on a downwards trend CAPVM also outperformed the prediction performance of multiple regression analysis ii Student Declaration I, Võ Thành Nguyên, declare that the PhD thesis entitled “A New Conceptual Automated Property Valuation Model for Residential Housing Market” is no more than 100,000 words in length including quotes and exclusive of tables, figures, appendices, bibliography, references and footnotes This thesis contains no material that has been submitted previously, in whole or in part, for the award of any other academic degree or diploma Except where otherwise indicated, this thesis is my own work Signature: Date: iii Acknowledgements I would like to express my special appreciation and thanks to both of my supervisors, Associate Professor Hao Shi and Dr Jakub Szajman, for fully supporting me throughout the course of doctoral program at Victoria University and for patiently guiding and encouraging me on conducting high level research I would like to thank Dr Andrew Rudge, the former Faculty Innovation and Development Manager of Victoria University, for supplying the crucial residential property data of Brimbank I would like to thank Dr Lucy Kennedy and Mr Douglas Marcina at Department of Sustainability and Environment, Victoria, Australia for providing data of Campbellfield and Footscray suburbs, Melbourne, Australia I would like to thank my wife, Dương Thị Kim Phượng, and all of my family members for their endless support during my period of working on the thesis I would also take this opportunity to thank those who have directly and indirectly helped me iv Publications Vo, N., Shi, H and Szajman, J 2011 Artificial Neural Network Optimisation in Automated Property Valuation Models with Encog Proceedings of 2011 World Congress on Engineering and Technology, Shanghai, China, 28-31 Oct 2011, pp 98-103 Vo, N., Shi, H and Szajman, J 2014 Optimisation to ANN Inputs in Automated Property Valuation Model with Encog and winGamma Journal of Applied Mechanics and Materials, vol 462-463, pp 1081-1086 v Table of Contents Abstract i Student Declaration iii Acknowledgements iv Publications v Table of Contents vi List of Figures x List of Tables xiii Glossary and List of Acronyms xv Chapter Introduction 1.1 Background 1.2 Research Objectives 1.3 Research Methods 1.4 Scope of the Research Chapter Literature Review 2.1 Introduction 2.2 Automated Valuation Model 2.2.1 Worldwide use of AVMs 2.2.2 AVMs in use in the Australian housing market 2.3 Statistical Evaluation of Housing Prices 10 2.3.1 The sales comparison approach 11 2.3.2 The cost approach 12 2.3.3 The hedonic approach 12 2.3.4 The repeat-sales approach 13 2.3.5 The income capitalisation approach 14 2.3.6 The mix-adjusted approach 15 vi Table of Contents 2.4 Artificial Intelligence Evaluation of Housing Prices 16 2.4.1 Rules-based artificial intelligence 17 2.4.2 Artificial neural networks 19 2.5 A Summary of Prior Studies Using ANNs 27 Chapter ANNs and Modelling 30 3.1 Introduction 30 3.2 ANN Topology 30 3.2.1 ANN basics 30 3.2.2 Input layer neurons 33 3.2.3 Hidden layer neurons 33 3.2.4 Output layer neurons 34 3.3 Activation Functions 34 3.3.1 Identity function 34 3.3.2 Binary step function 35 3.3.3 Sigmoid function 36 3.3.4 Bipolar sigmoid function 37 3.4 ANN Training Algorithms 38 3.4.1 Supervised learning 39 3.4.1.1 Backpropagation 39 3.4.1.2 Manhattan update rule .40 3.4.1.3 Quick propagation .40 3.4.1.4 Perceptron rule 40 3.4.1.5 Levenberg-Marquardt algorithm 41 3.4.1.6 Resilient propagation 41 3.4.2 Unsupervised learning 42 3.4.2.1 Hebb rule .42 vii Table of Contents 3.4.2.2 Radial basis function network .42 3.4.2.3 Self-organising map 44 3.5 ANN Engines 45 3.5.1 Neuroph 45 3.5.2 JOONE 47 3.5.3 Encog 47 3.5.4 winGamma 50 3.6 Applications of ANN to Forecasting 50 Chapter Design and Implementation of CAPVM 54 4.1 Introduction 54 4.2 CAPVM Development Requirements 54 4.3 CAPVM Design 56 4.3.1 Variable selection 57 4.3.2 Data pre-processing 58 4.3.3 Number of inputs 58 4.3.4 Bias neuron 59 4.3.5 Training error threshold 60 4.4 CAPVM Implementation 61 4.5 Confidence in CAPVM 63 Chapter Experimental Design and Results 64 5.1 Introduction 64 5.2 CAPVM – Brimbank Case Study 64 5.2.1 Properties in Brimbank 66 5.2.2 Inputs selection 67 5.2.3 Data collection 74 5.2.4 Data pre-processing 76 viii Table of Contents 5.3 CAPVM Training Types 80 5.4 Optimisation to ANNs 82 5.4.1 Optimisation to hidden neurons 82 5.4.2 Optimisation to error threshold 85 5.4.3 winGamma optimisation to ANN inputs 89 5.4.4 winGamma results 95 5.4.5 Sensitivity of input variables 98 5.4.6 Tests of additional input variables 102 5.5 Forecasting with CAPVM 105 5.5.1 CAPVM experimental results 112 5.5.2 Analysis of results 121 5.6 Prediction of Median Price Using CAPVM 130 5.7 Comparison of Multiple Regression Analysis and CAPVM Results 132 Chapter Conclusions 139 6.1 Research Contributions 139 6.2 Conclusions 141 6.3 Future work 142 References 144 Appendix A Published Paper 155 Appendix B Published Paper 161 ix Chapter 6—Conclusions Reducing CAPVM complexity improved the efficiency and the accuracy of price determinations This was achieved by optimising the number of hidden layer, hidden neurons and the number of inputs (see Section 5.4 for details) One of the most critical decision-makings in building CAPVM was the choice of input variables Any neural network model needs to have sufficient relevant inputs to allow learning of the complex relationship embedded in the data However, a neural network model should not have too many inputs as its prediction capability was adversely affected The number of inputs was optimised (reduced) by applying winGamma software package used for nonlinear analysis and modelling (see Section 3.5.4 for details) winGamma ranks the inputs in order of their sensitivity and ability to affect the output The least sensitive input was then removed and it was verified that the performance of CAPVM improved (see Figure 5.15 for details) In addition, the behaviour of the error threshold was investigated After training the network, the performance was thoroughly tested by investigating the behaviour of the Fitness in various situations The forecast results have been significantly improved as the number of years in the training set increased CAPVM passed the accuracy level (80.54%) after 10 consecutive years of training data (trainSet(1999,2009)) required in the training set for testSet(2010) The forecast performance was even better when the trainSet(1999,2010) was used to train CAPVM It made the accuracy level go up to 86.39% For example, CAPVM has learnt very little about the market changes in the first four consecutive years of data (from 1999 to 2002), and it was one the reasons why the CAPVM forecasted house prices for year 2012 were poor (see ANN1 to ANN4 for details) 140 Chapter 6—Conclusions Optimisation of CAPVM was achieved by determining the best number of the hidden layers, the hidden neurons and the input variables, and finding the best value of training error threshold CAPVM was excellent in predicting 86.39% of residential property prices within the accuracy margin of ±10% error of the actual sale price (see Section 4.5 for details), a better performance than DSE’s manual valuations and National Australia Bank’s published figures It successfully modelled the annual changes in residential property prices for hard to predict periods 2007-2008 during the global financial crisis and 2010-2012 residential property boom when the interest rates were on a downwards trend CAPVM also outperformed the prediction performance of multiple regression analysis (see Section 5.7 for details) 6.2 Conclusions In this research work a CAPVM has been proposed, which was able to forecast house prices by using an MLP(14;7 + 1;1) neural network topology with iRPROP+ training algorithm displayed in Figure 5.13 Other training algorithms were considered but iRPROP+ training algorithm was quicker and more efficient as stated by Riedmiller and Braun (1993) and Heaton (2010) Input variables set, hidden neurons and hidden layers were optimised An empirical value of the error threshold was found to be 0.32 by systematic trial-and-error experiments (see Table 5.13 for details) CAPVM forecast quarterly median house price was more accurate than that of NAB’s forecast CAPVM had an RMS percentage change value of 3.77% while NAB had a slightly higher value of 4.02% While the two RMS values were similar, CAPVM followed the trends of actual sale price better than NAB (see Figure 5.55 for details) 141 Chapter 6—Conclusions CAPVM achieved better results than NAB’s forecast median house price CAPVM could be easily extended and applied equally well to other regions of Australia CAPVM has the potential to significantly save time and resources to financial institution and house buyers But the challenge is to incorporate its use in a way that yields savings whilst maintaining the quality of its intended operation That is, the benefits of CAPVM can only be fully realised when its results are used to augment the careful judgement of an appraiser In order to improve the valuation appraisers should use other house price predicting tools in conjunction with the CAPVM predictions 6.3 Future work The improvements observed when new input variables, such as interest rates, property type and sold type, were added to the input variable set suggested that it was both the current input variable set and the addition of new input variables that were important Increasing the number of input variables for CAPVM might improve the forecast performance, but it could also adversely affect its prediction capability The optimised input variable set chosen for CAPVM have produced good forecasts However, it is possible that other variables may be able to improve CAPVM accuracy A list of potentially useful input variables is given in Table 6.1 The benefit of including the suggested of input variables could improve the performance of CAPVM However, the model identification provided by winGamma must be employed to identify possible candidates for inclusion Sensitivity analysis must then be applied next for final determination of which input variables to include 142 Chapter 6—Conclusions Other ANN topologies and engines, such as @Brain, Neural Shell and MatLab, could be used to improve the prediction performance There is also room to improve the prediction performance of CAPVM by collecting more historical and present data because the more data the more patterns for CAPVM to learn and adapt CAPVM could be extended to work with apartments and the commercial properties It could be also adapted to provide business solution outside real estate market Table 6.1 Suggested input variables for CAPVM Potential important variables Variable type Housing demand Ordinal Landscape views Ordinal Invest-ability Ordinal Burglary statistics Ordinal Reasons If there is a high housing demand it is likely that house prices are expected to increase Landscape views such as water view and city view can cause house prices to increase If the block can be subdivided, it is likely the price to be increased People like to live in areas with low crime rates It is likely the prices are increased in those areas 143 References ABS 2012 Australian Bureau of Statistics [Online] viewed 06 Mar 2012 Adair, A.S., Berry, J.N and McGreal, W.S 1996 Hedonic modelling, housing submarkets and residential valuation Journal of Property Research, vol 13, pp 67-83 Alfares, H.K and Nazeeruddin, M 2002 Electric load forecasting: literature survey and classification of methods International Journal of Systems Science, vol 33, pp 23-34 Anderson, J.A and Davis, J 1995 An introduction to neural networks, MIT Press Andrew, M and Meen, G 1998 Modelling regional house prices: A review of the literature, Report Prepared for the Department of the Environment, Transport and the Regions, Centre for Spatial and Real Estate Economics, University of Reading Bagnoli, C and Smith, H.C 1998 The theory of fuzz logic and its application to real estate valuation Journal of Real Estate Research, vol 16, pp 169-200 Bailey, M.J., Muth, R.F and Nourse, H.O 1963 A Regression Method for Real Estate Price Index Construction Journal of The American Statistical Association, vol 58, pp 933-42 Bishop, C.M 1995 Neural networks for pattern recognition Clarendon Oxford viewed 15 Mar 2010 Bonissone, P.P and Cheetham, W Financial applications of fuzzy case-based reasoning to residential property valuation Fuzzy Systems, 1997., Proceedings of the Sixth IEEE International Conference on, 1997 IEEE, pp 37-44 Borst, R 1995 Artificial neural networks in mass appraisal Journal of Property Tax Assessment and Administration, vol 1, pp 5-15 Bourassa, S.C., Hamelink, F., Hoesli, M and MacGregor, B.D 1999 Defining Housing Submarkets Journal of Housing Economics, vol 8, pp 160-183 Brimbank 2012 Brimbank City Council [Online] viewed 09 Sep 2011 144 References Byrne, P 1995 Fuzzy analysis: a vague way of dealing with uncertainty in real estate analysis? Journal of Property Valuation and Investment, vol 13, pp 22-41 Calhoun, C.A 2001 Property Valuation Methods and Data in the United States Housing Finance International, vol 16, pp 12-23 Case, K.E and Shiller, R.J 1987 Prices of Single-family Home Since: New Indexes for Four Cities Journal of New England Economic Review, vol 23, pp 45-46 Cechin, A., Souto, A and Aurelio Gonzalez, M Real estate value at Porto Alegre city using artificial neural networks Neural Networks, 2000 Proceedings Sixth Brazilian Symposium on, 2000 IEEE, 22-25 Nov 2000 pp 237-242 Chung, C 2011 L.J Hooker Real Estate Director, St Albans, Victoria, Australia Private communication, 03 Apr 2011 Colebatch, T 2010a Foreign home buyers backflip [Online] viewed 24 Apr 2010 Colebatch, T 2010b People our biggest import [Online] viewed 30 Mar 2010 Colebatch, T 2010c Victoria's population growth fastest in nation [Online] viewed 26 Jun 2010 Collins, A and Evans, A 1994 Artificial Neural Networks: An Application to Residential Valuation in the UK Journal of Property Valuation and Investment, vol 11, pp 195-204 Deboeck, G and Kohonen, T 1998 Visual explorations in finance: with selforganizing maps, Springer New York Diaz, M.J 1990 How Appraisers Do Their Work: A Test of the Appraisal Process and the Development of a Descriptive Model The Journal of Real Estate Research, vol 5, pp 115 Din, A., Hoesli, M and Bender, A 2001 Environmental variables and real estate prices Urban Studies, vol 38, pp 1989-2000 Do, A.Q and Grudnitski, G 1992 A neural network approach to residential property appraisal Real Estate Appraiser, vol 58, pp 38-45 145 References Domain 2012 Domain [Online] viewed 05 Feb 2012: Domain is part of TheAge online newspaper It contains sold and listed property information starting from 1999 Dotzour, M.G 1988 Quantifying Estimation Bias in Residential Appraisal The Journal of Real Estate Research, vol 3, pp 1-11 Drey, B.J 1989 Artificial Intelligence: The 'AI' MAI Appraiser The Appraisal Journal, vol 20, pp 51-56 DSE 2010 Valuation Best Practice 2010 Specification Guidelines [Online] viewed 10 Jun 2010 DSE 2012 Valuation Best Practice 2012 Specifications Guidelines [Online] viewed 05 May 2012 DTREG 2011 DTREG [Online] viewed 09 Jul 2012 Durrant, P.J 2001 winGamma: A non-linear data analysis and modelling tool with applications to flood prediction, PhD thesis, Department of Computer Science, Cardiff University, Wales, UK viewed 10 Feb 2010 Fahlman, S.E 1988 An empirical study of learning speed in back-propagation networks, Citeseer Ferguson, A 2010 Australia's property bubble: it's here [Online] viewed 20 Nov 2010 Fik, T.J., Ling, D.C and Mulligan, G.F 2003 Modeling spatial variation in housing prices: a variable interaction approach Real Estate Economics, vol 31, pp 623646 Garcia, N., Gamez, M and Alfaro, E 2008 ANN+GIS: An automated system for property valuation Neurocomputing, vol 71, pp 733-742 Gardner, K and Barrows, R 1985 The impact of soil conservation investments on land prices American Journal of Agricultural Economics, vol 67, pp 943-947 Ge, J., Runeson, G and Lam, K Forecasting Hong Kong housing prices: An artificial neural network approach International conference on methodologies in housing research, Stockholm, Sweden, 2003 146 References Ghosh, R 2003 A Novel Hybrid Learning Algorithm For Artificial Neural Networks PhD Thesis, 2003, Griffith University School of Information Technolgy viewed 15 May 2010 Gonzalez, A.J and Laureano, R 1992 A case-based reasoning approach to real estate property appraisal Expert Systems with Applications, vol 4, pp 229-246 Goodman, A.C and Thibodeau, T.G 2003 Housing market segmentation and hedonic prediction accuracy Journal of Housing Economics, 12, 181-201 Gradojevic, N and Yang, J 2006 Non-linear, non-parametric, non-fundamental exchange rate forecasting Journal of Forecasting, vol 25, pp 227-245 Graham, F 1966 Comparative method for mass assessment of residential real estate Assessors Journal, vol 1, pp 41-54 Guan, J., Zurada, J and Levitan, A.S 2008 An adaptive neuro-fuzzy inference system based approach to real estate property assessment Journal of Real Estate Research, vol 30, pp 395-422 Hajek, P 2010 Credit rating modelling by neural networks, New York : Nova Science Publishers, c2010 viewed 25 Oct 2011 Hamzaoui, Y.E and Perez, J.A.H Application of artificial neural networks to predict the selling price in the real estate valuation process 2011 IEEE, pp 175-181 Hansen, J 2009 Australian House Prices: A Comparison of Hedonic and Repeat-Sales Measures The Journal of The economic society of Australia, vol 85, pp 132145 Hansen, J., Prasad, N and Richards, A 2006 Measuring Housing Prices: An Update Hansen, M.H., Hurwitz, W.N and Madow, W.G 1953 Sample survey methods and theory Hassom, M.H 1995 Fundamentals of Artificial Neural Networks Hayles, K 2006 The use of GIS and cluster analysis to enhance property valuation modelling in Rural Victoria Journal of spatial science, vol 51, pp 19-31 Heaton, J 2010 Programming Neural Networks with Encog in Java Heaton Research [Online] viewed 15 Feb 2010 147 References Hertz, J.A., Krogh, A.S and Palmer, R.G 1991 Introduction to the theory of neural computation, Westview press Hornik, K 1991 Approximation capabilities of multilayer feedforward networks Neural networks, vol 4, pp 251-257 Hui, E and Ho, V 2003 Does the planning system affect housing prices? Theory and with evidence from Hong Kong Habitat International, vol 27, pp 339-359 Ibrahim, M.F., Cheng, F.J and Eng, K.H 2005 Automated valuation model: an application to the public housing resale market in Singapore Property Management, vol 23, pp 357-373 Isakson, H.R 2001 Using multiple regression analysis in real estate appraisal Appraisal Journal, vol 69, pp 424-430 Jang, J 1993 ANFIS: Adaptive-network-based fuzzy inference system Systems, Man and Cybernetics, IEEE Transactions on, vol 23, pp 665-685 Johanson, S 2010 One year adds $98,000 to house [Online] 05 Aug 2010 Johanson, S 2013 House prices hit new peaks [Online] viewed 01 Oct 2013 Jones, A.J 2001 The winGamma User Guide, University of Wales, Cardiff viewed 06 May 2010 Kaastra, I and Boyd, M 1996 Designing a neural network for forecasting financial and economic time series Neurocomputing, vol 10, pp 215-236 Kanas, A 2001 Neural network linear forecasts for stock returns International Journal of Finance & Economics, vol 6, pp 245-254 Karakozova, O 2000 Comparison between neural network and multiple regression approaches: An Application to Residential Valuation in Findland Swedish School of Economics and Business Administration Kauko, T., Hooimeijer, P and Hakfoort, J 2002 Capturing housing market segmentation: An alternative approach based on neural network modelling Housing Studies, vol 17, pp 875-894 148 References Kohonen, T 1982 Self-organized formation of topologically correct feature maps Biological cybernetics, vol 43, pp 59-69 Kontrimas, V and Verikas, A 2011 The mass appraisal of the real estate by computational intelligence Applied Soft Computing, vol 11, pp 443-448 Lam, K.C., Yu, C.Y and Lam, K.Y 2008 An Artificial Neural Network and Entropy Model for Residential Property Price Forecasting in Hong Kong Journal of Property Research, vol 25, pp 321-342 Lasota, T., Makos, M and Trawi, B 2009 Comparative Analysis of Neural Network Models for Premises Valuation Using SAS Enterprise Miner New Challenges in Computational Collective Intelligence, vol 2, pp 337-348 Lenk, M.M., Worzala, E.M and Silva, A 1997 High-tech valuation: should artificial neural networks bypass the human valuer? Journal of Property Valuation and Investment, vol 15, pp 8-26 Levenberg, K 1944 A method for the solution of certain problems in least squares Quarterly of applied mathematics, vol 2, pp 164-168 Limsombunchai, V and Gan, C.L 2004 House price prediction: Hedonic price model vs artificial neural network American Journal of Applied Sciences, vol 1, pp 193-201 Liu, J.G., Zhang, X.L and Wu, W.P 2006 Application of fuzzy neural network for real estate prediction Advances in Neural Networks-ISNN 2006 Springer Lowe, D and Broomhead, D 1988 Multivariable functional interpolation and adaptive networks Complex systems, vol 2, pp 321-355 Mac, F 2003 AMVs developer Homer Hoyt Institue Maier, H.R., Dandy, G.C and Burch, M.D 1998 Use of artificial neural networks for modelling cyanobacteria Anabaena spp in the River Murray, South Australia Ecological Modelling, vol 105, pp 257-272 Malleswaran, M., Vaidehi, V., Saravanaselvan, A and Mohankumar, M 2011 Performance analysis of various artificial intelligent neural networks for GPS/INS integration Applied Artificial Intelligence, vol 27, pp 367-407 Marcina, D 2010 Department of Sustainability and Environment, Victoria, Australia Private Communication, 05 May 2010 149 References Marquardt, D.W 1963 An algorithm for least-squares estimation of nonlinear parameters Journal of the society for Industrial and Applied Mathematics, 11, 431-441 Marrone, P 2007 The Complete Guide: All you need to know about JOONE Masters, T 1993 Practical neural network recipes in C++, Morgan Kaufmann Pub McClelland, J.L and Rumelhart, D.E 1988 Explorations in Parallel Distributed Processing-IBM version McCluskey, W., Dyson, K., McFall, D and Anand, S 1996 Mass appraisal for property taxation: an artificial intelligence approach Australian Land Economics Review, vol 2, pp 25-32 McCluskey, W.J and Adair, A.S 1997 Computer Assisted Mass Appraisal: An International Review vol 25, pp 1-360 McGreal, S., Adair, A., McBurney, D and Patterson, D 1998 Neural networks: the prediction of residential values Journal of Property Valuation and Investment, vol 16, pp 57-70 Meen, G and Andrew, M 1998 Modelling regional house prices: A review of the literature Meese, R.A and Wallace, N.E 1997 The Construction of Residential Housing Price Indices: a Comparison of Repeat-sales, Hedonic-regression and Hybrid Approaches Real Estate Finance and Economics, vol 14, pp 51-73 Megbolugbe, I.F., Marks, A.P and Schwartz, M.B 1991 The economic theory of housing demand: a critical review Journal of Real Estate Research, vol 6, pp 381-393 Minsky, M.L and Papert, S 1969 Perceptrons: An introduction to computational geometry, MIT press Cambridge, MA Moore, J.W 2005 Performance comparison of automated valuation models Journal of Property Tax Assessment & Administration, vol 3, pp 43 Moshiri, S and Brown, L 2004 Unemployment variation over the business cycles: a comparison of forecasting models Journal of Forecasting, vol 23, pp 497-511 Moshiri, S and Cameron, N 2000 Neural network versus econometric models in forecasting inflation Journal of Forecasting, vol 19, pp 201-217 150 References NAB 2012 National Australia Bank [Online] viewed 06 Dec 2012 Nattagh, N and Ross, D 2000 An updated appraisal of automated valuation Mortgage Banking, vol 61, pp 79-83 Negnevitsky, M 2005 Artificial Intelligence, New York : Addison-Wesley viewed 15 Mar 2010 Neuroph 2010 Sourceforge [Online] viewed 06 Jun 2010 Nguyen, N and Cripps, A 2001 Predicting housing value: A comparison of multiple regression analysis and artificial neural networks Journal of Real Estate Research, vol 22, pp 313-336 Oracle 2010 Oracle and Java Technologies [Online] viewed 14 Oct 2010 [Accessed 14 Oct 2010] Paris, S.D 2009 Using artificial neural networks to forecast changes in national and regional price indices for the UK residential property market PhD Thesis, 2009, University of Glamorgan School of Information Technology viewed 05 Mar 2010 Prasad, N and Richards, A 2008 Measuring Housing Price Growth - Using Stratification To Improve Median-Based Measures Economic Group Reserve Bank of Australia Qi, M 2001 Predicting US recessions with leading indicators via neural network models International Journal of Forecasting, vol 17, pp 383-401 RBA 2013 Reserve Bank of Australia [Online] 15 Jul 2013 Riedmiller, M and Braun, H A direct adaptive method for faster backpropagation learning: The RPROP algorithm Neural Networks, 1993., IEEE International Conference on, 1993 IEEE, pp 586-591 Rosen, S 1974 Hedonic Prices and Implicit Markets: Product Differentiation in Pure Competition Political Economy, vol 82, pp 34-55 Rosenblatt, F 1958 The perceptron: A probabilistic model for information storage and organization in the brain Psychological review, 65, 386 151 References Rossini, P 1998 Improving the results of artificial neural network models for residential valuation Rossini, P.A 1997 Artificial neural networks versus multiple regression in the valuation of residential property Australian Land Economics Review, vol 3, pp 1-12 rpdata.com 2010 Comparing the quality of property valuation methologies [Online] viewed 11 Apr 2010 Schulz, R 2003, p 11 Valuation of properties and economic models of real estate markets, Univ., Diss Selim, H 2009 Determinants of house prices in Turkey: Hedonic regression versus artificial neural network Expert Systems with Applications, vol 36, pp 28432852 Shiller, R.J 1991 Arithmetic Repeat Sales Price Estimators Housing Economics, vol 1, pp 110-26 Smith, H.C 1989 Inconsistencies in Appraisal Theory and Practice The Journal of Real Estate Research, vol 1, pp 1-17 Stegemann, J and Buenfeld, N 1999 A glossary of basic neural network terminology for regression problems Neural computing & applications, vol 8, pp 290-296 Sureshkumar, K.K and Elango, N.M 2013 An Approach to Forecast National Stock Exchange Index–CNX NIFTY using Neural Networks International Journal of Advanced Research in Computer Science and Applications, vol 1, pp 8-18 Suter, R.C 1974 The appraisal of farm real estate, Interstate Printers & Publishers Tabales, J.N., Caridad, J.M and Carmona, F.J.R 2013 Artificial Neural Networks for Predicting Real Estate Prices Revista de métodos cuantitativos para la economía y la empresa, vol 15, pp 29-44 Tay, D.P.H and Ho, D.K.K 1992 Artificial intelligence and the mass appraisal of residential apartments Journal of Property Valuation and Investment, vol 10, pp 525-40 Thirumuruganathan, S 2010 A Detailed Introduction to K-Nearest Neighbor (KNN) Algorithm [Online] viewed 01 Oct 2011 152 References Tkacz, G 2001 Neural network forecasting of Canadian GDP growth International Journal of Forecasting, vol 17, pp 57-69 Tse, R.Y.C and Love, P.E.D 2000 Measuring residential property values in Hong Kong Property Management, vol 18, pp 366-374 Vandell, K.D 1991 Optimal Comparable Selection and Weighting in Real Property Valuation Journal of American Real Estate and Urban Economics Association, vol 19, pp 213-239 Vellido, A., Lisboa, P.J and Vaughan, J 1999 Neural networks in business: a survey of applications (1992–1998) Expert Systems with Applications, vol 17, pp 5170 Vo, N., Shi, H and Szajman, J 2011 Artificial Neural Network Optimisation in Automated Property Valuation Models with Encog Proceedings of 2011 World Congress on Engineering and Technology, Shanghai, China, 28-31 Oct 2011, pp 98-103 Vo, N., Shi, H and Szajman, J 2014 Optimisation to ANN Inputs in Automated Property Valuation Model with Encog and winGamma Journal of Applied Mechanics and Materials, vol 462-463, pp 1081-1086 Wang, M and Wang, S 2006 Parametric Shape and Topology Optimization with Radial Basis Functions In: BENDSØE, M P., OLHOFF, N & SIGMUND, O (eds.) IUTAM Symposium on Topological Design Optimization of Structures, Machines and Materials Springer Netherlands Wedge, E 2007 Convincing Ground: Learning to fall in love with your country Aboriginal Studies Press viewed 25 Oct 2010, pp Wilson, I.D., Paris, S.D., Ware, J.A and Jenkins, D.H 2002 Residential property price time series forecasting with neural networks Knowledge-Based Systems, vol 15, pp 335-341 Woinaroschy, A 2010 Professor, PhD Chemical Engineer Member of Academy for Technical Sciences of Romania Department of Chemical and Biochemical Engineering POLITEHNICA University of Bucharest Web: www.woinaroschy.5u.com Private communication, 30 Oct 2010 Worzala, E., Lenk, M and Silva, A 1995 An Exploration of Neural Networks and Its Application to Real Estate Valuation The Journal of Real Estate Research, vol 10, pp 185-201 153 References Yahoo!7Finance 2014 All Ordinaries [Online] viewed 02 Apr 2014 Zappone, C 2012 Home prices jump after RBA cuts [Online] viewed 02 Jul 2012 Zapranis, A., Achilleas, D and Refenes, A.P 2009 Principles of neural model identification, selection and adequacy: with applications to financial econometrics, Springer Verlag 1999 Zhang, G and Patuwo, B 1998 Forecasting with artificial neural networks: The state of the art International journal of forecasting, vol 14, pp 35-62 Zhang, P 2005 Neural networks Data Mining and Knowledge Discovery Handbook, 487-516 Zhang, R and Chen, W A Study on Automated Valuation Model in Mass Appraisal System for Real Property Tax 2009 IEEE, pp 254-257 Zhang, W., Cao, Q and Schniederjans, M.J 2004 Neural network earnings per share forecasting models: a comparative analysis of alternative methods Decision Sciences, vol 35, pp 205-237 Zhang, X 1994 Time series analysis and prediction by neural networks Optimization Methods and Software, vol 4, pp 151-170 Zhang, X and Feng, W Self-organizing neural networks evaluation model and its application 2010 IEEE, 52-55 Zurada, J., Levitan, A.S and Guan, J 2011 A Comparison of Regression and Artificial Intelligence Methods in a Mass Appraisal Context Journal of Real Estate Research, vol 33, pp 349-387 154 [...]... API Application Programming Interface AVM Automated Valuation Model BRIMBANK Brimbank is a region which contains 25 suburbs in Victoria, Australia CAMA Computer-Assisted Mass Appraisal CAPVM Conceptual Automated Property Valuation Model CARA Computer Assisted Review Appraisals CAREAS Computer Assisted Real Estate Appraisal System CMA Computer Mass Assessment CPU Central Processing Unit DOMAIN A website... that location was a fundamental variable in estimating residential property value Another reason for grouping by location was a practical one, that is, location variables were almost readily available in most housing transaction databases (Goodman & Thibodeau 2003) Of the six general approaches to residential property evaluation, there was sufficient overlap Both valuation types used the comparable approach... available for valuation: sales comparison approach, cost approach, hedonic approach, repeat sales approach, income capitalisation approach and mix-adjusted approach These approaches could be used together by both human valuers and automated valuers such as AVMs 2.3 Statistical Evaluation of Housing Prices In the recent years, Australian house prices have been fluctuating and generally increasing (Ferguson... main stages: selection of study area, residential property data collection, data pre-processing, data partition for training and testing of CAPVM, selection of performance criteria, ANN topology, ANNs optimisation, forecasting with CAPVM, and assess performance of CAPVM relative to statistical MRA model Stage one involved the selection of residential housing region in Victoria, Australia An area was... sciences statistical package software, an extension of the sales comparison method except it used statistics for evaluation This approach had become available to appraisers because the computing power has dramatically increased in the past 30 years The third approach was Adaptive Estimation Procedure (AEP) which had its origin in numerical analysis and had also been available for about 30 years in the... Specific property evaluation, where an individual appraiser undertakes a physical inspection of the property (known as the manual valuation technique) • Generalised data models, based on the characteristics of the residential property data The evaluation was fully automated without the requirement of an individual appraiser to pay a physical inspection of the residential property Within the specific residential. .. No Automated valuation Yes Yes Yes Yes Yes 2.4 Artificial Intelligence Evaluation of Housing Prices Most real estate agencies manually appraised residential properties through traditional sales comparison approach, cost-approach and repeat-sales approach Such approach techniques need to look up information about a particular property, and sometimes require site visit to inspect the property Manual... To date, ANNs have not been used in AVM for residential valuation in Victoria, Australia This research work sought to apply ANNs, with open source ANN library along with winGamma, within the residential housing valuation 4 Chapter 1—Introduction One of the key features that make ANNs so valuable for the development of AVMs is that they are data-driven, self-learning from examples and able to capture... in use in Australia, for example, the sales comparison approach and the cost approach 2.2.2 AVMs in use in the Australian housing market In the Australian housing market, there were a number of commonly used methods available for residential property evaluation The evaluation methods commonly used in Australia fell into the following two distinct groups (rpdata.com 2010): 9 Chapter 2—Literature Review... Glossary and List of Acronyms testSet(start_year ,end_year) A mathematical notation that self-explanatory of the data which is used for testing in CAPVM trainSet(start_year, end_year) A mathematical notation that self-explanatory of the data which is used for training in CAPVM xvii Chapter 1 Introduction Residential properties in Victoria are re-valued manually every two years by the Department of Sustainability ... Australia CAMA Computer-Assisted Mass Appraisal CAPVM Conceptual Automated Property Valuation Model CARA Computer Assisted Review Appraisals CAREAS Computer Assisted Real Estate Appraisal System CMA Computer... of Automated Valuation Models (AVMs) used in residential property valuation in Australia: sales comparison approach, cost approach, hedonic, income capitalisation approach and price indexation... of Automated Valuation Models (AVMs) used in residential property valuation in Australia: sales comparison approach, cost approach, hedonic, income capitalisation approach and price indexation

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